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Indirect adaptive control of nonlinear system via dynamic multilayer neural networks with multi-time scales

机译:多时间尺度动态多层神经网络对非线性系统的间接自适应控制

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This paper deals with the adaptive nonlinear identification and trajectory tracking via dynamic multilayer neural network with different time-scales. By means of a Lyapunov-like analysis we determine stability conditions for the identification. Based on the identification results, we design a sliding mode controller for the nonlinear system to track the trajectory of a reference model. The main contributions of the paper are: First, we extend our prior results of single-layer dynamic neural networks with multi-time scales to the multilayer case. Second, the e-modification in standard use in adaptive control is introduced in the on-line update laws to guarantee bounded weights, bounded identification and tracking errors. Simulation results are presented confirming the validity of the above approach.
机译:本文通过不同时间尺度的动态多层神经网络进行自适应非线性辨识和轨迹跟踪。通过类似Lyapunov的分析,我们确定了鉴定的稳定性条件。基于识别结果,我们为非线性系统设计了一个滑模控制器,以跟踪参考模型的轨迹。该论文的主要贡献是:首先,我们将具有多个时间尺度的单层动态神经网络的先前结果扩展到多层情况。其次,在线更新定律中引入了自适应控制中标准使用的电子修改,以保证有界权重,有界识别和跟踪误差。仿真结果表明了上述方法的有效性。

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